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1 Learning from Prices, Liquidity Spillovers, and Market Segmentation Giovanni Cespa and Thierry Foucault December 2011 Abstract We describe a new mechanism that explains the transmission of liquidity shocks from one security to another ( liquidity spillovers ). Dealers use prices of other securities as a source of information. As prices of less liquid securities convey less precise information, a drop in liquidity for one security raises the uncertainty for dealers in other securities, thereby affecting their liquidity. The direction of liquidity spillovers is positive if the fraction of dealers with price information on other securities is high enough. Otherwise liquidity spillovers can be negative. For some parameters, the value of price information increases with the number of dealers obtaining this information. In this case, related securities can appear segmented, even if the cost of price information is small. Keywords: Liquidity spillovers, Liquidity Risk, Contagion, Value of price information, Transparency, Colocation. JEL Classification Numbers: G10, G12, G14 A previous version of this paper was circulated under the title: Dealer attention, liquidity spillovers, and endogenous market segmentation. We are grateful to Terry Hendershott (the AFA discussant) for his comments. We also thank Dimitri Vayanos and seminar participants at the 2011 AFA meeting, the Copenhaguen Business School, theb ESADE-IESE workshop, the University of Naples, the Paris School of Economics, the School of Banking and Finance at UNSW, the 6th CSEF-IGIER Symposium on Economics and Institutions, and the workshop on Acquisition, Use and Transmission of Private Information in Financial Markets (European University Institute, June 2010) for helpful comments and suggestions. Cespa acknowledges financial support from ESRC (grant n. ES/J00250X/1). All errors are ours. Cass Business School, CSEF, and CEPR. HEC, School of Management, Paris, GREGHEC, and CEPR. Tel: (33) ; 1

2 1 Introduction The flash crash of May 6, 2010 provides a striking illustration of how a drop in the liquidity of one security can quickly propagate to other securities. As shown in the CFTC-SEC report on the flash crash, buy limit orders for the E-mini futures contract on the S&P 500 index vanished in a few minutes after 2:30 p.m. on May 6, This evaporation of liquidity in the E-mini futures was soon followed by a similar phenomenon in the SPY Exchange Traded Fund (another derivative security on the S&P 500 index) and in the S&P 500 index component stocks (see Figure 1.12 in the joint CFTC-SEC report), resulting in a very high volatility in transaction prices (with some stocks trading as low as a penny or as high as $100, 000). Why do such liquidity spillovers arise? Addressing this question is of broad interest. It can shed light on sudden and short systematic liquidity crises such as the flash crash. More generally, it can explain why liquidity co-varies across securities. 2 Co-movements in liquidity have important implications for asset pricing since they are a source of systematic risk (see for instance Acharya and Pedersen (2005), Korajczyk and Sadka (2008) and Amihud et al. (2005) for a survey). Yet, their cause(s) is not well understood. Co-variations in liquidity may be driven by systematic variations in the demand for liquidity (see Hendershott and Seasholes (2009) or Koch, Ruenzi and Starks (2010)) or systematic variations in the supply of liquidity. One possibility is that financing constraints constitute a systematic liquidity factor because they bind liquidity providers in different securities at the same time. This mechanism is formalized by Gromb and Vayanos (2002) and Brunnemeier and Pedersen (2007) and has received empirical support from analysis of NYSE stocks (see for instance, Coughenour and Saad (2004) or Comerton-Forde et al. (2010)). Another related explanation is that a drop in the capital available to financial intermediaries active in multiple securities can trigger an increase in risk aversion, impairing the supply of liquidity in these securities (as in Kyle and Xiong (2001)). In this paper we analyze a new mechanism that generates co-movements in the supply of liquidity in different securities, even when dealers active in these securities are distinct and not simultaneously hit by a market wide shock. Dealers in a security often rely on the prices of other securities to set their quotes. For instance, dealers in a stock learn information from the prices of other stocks in their industry or stock index futures. We show that cross-security learning by dealers causes liquidity spillovers and thereby co-movements in liquidity. To see this intuitively, consider a dealer in security X who uses the price of security Y as a source of information. Movements in the price of security Y are informative because they reflect news about fundamentals known to dealers in security Y. However, this signal is noisy since price movements in security Y also reflect transient price pressures due to uninformed trades. These transient price pressures account for a larger fraction of price volatility when the cost of 1 See Findings regarding the market events of May 6, 2010, CFTC-SEC joint report available at http: // 2 Evidence of co-variations in liquidity are provided in Chordia et al. (2000), Hasbrouck and Seppi (2001), Huberman and Halka (2001), Korajczyk and Sadka (2008), Corwin and Lipson (2011) for stocks and Chordia et al. (2005) for bonds and stocks. 2

3 liquidity provision for dealers in security Y is higher. 3 For this reason, the informativeness of the price of security Y for dealers in security X is smaller when security Y is less liquid. 4 Now suppose that a shock specific to security Y decreases the cost of liquidity provision for dealers in this security (e.g., dealers in this security face less stringent limits on their positions). Thus, security Y becomes more liquid and, for this reason, the price of security Y becomes more informative for dealers in security X (transient price pressures in security Y contribute less to its volatility relative to news about fundamentals). As a result, inventory risk for dealers in security X is lower and the cost of liquidity provision for these dealers declines as well. In this way, the improvement in liquidity for security Y spreads to security X, as shown in Figure 1. [Insert Figure 1 about here] To formalize this intuition, we consider a model with distinct pools of risk averse dealers operating in two securities, X and Y, with a two-factor structure. Dealers in a given market have identical information on one of the risk factors. However, dealers operating in different markets are informed on different risk factors. For this reason, dealers in one market can learn information about the risk factor on which they have no information by watching the price of the other security. We explore two cases: the case in which learning is two-sided (dealers in each security learn from each other s price) and the case in which learning is one-sided (the price of one security is informative for dealers in another security but not vice versa). 5 refer to dealers who engage in cross-security price monitoring as being pricewatchers. The fraction of pricewatchers associated with a security sets the dealers level of attention to the other security. The model generates the spillover mechanism portrayed in Figure 1 and a rich set of implications. First, when learning is two-sided, an exogenous shock to the cost of liquidity provision in one security (say Y ) is amplified by the propagation of this shock to the cost of liquidity provision in the other security (say X). Indeed, as learning is two-sided, the change in the liquidity of security X feeds back on the liquidity of security Y, which sparks a chain reaction amplifying the initial shock. Hence, liquidity is fragile in our model: a small exogenous drop in the liquidity of one market can ultimately result in a disproportionately large drop in the liquidity of this market and other related markets. 3 For stocks listed on the NYSE, Hendershott, Li, Menkveld and Seasholes (2010) show that 25% of the monthly return variance is due to transitory price changes. Interestingly, they also find that transient price pressures are stronger when market-makers inventories are relatively large. This finding implies that price movements are less informative when dealers cost of liquidity provision is higher, in line with our model. 4 In this paper, we measure liquidity by the sensitivity of prices to market order imbalances, as in Kyle (1985). The market is more liquid when this sensitivity is low. Empirically, this sensitivity can be measured by regressing price changes on order imbalances (see for instance Glosten and Harris (1988) or Korajczyk and Sadka (2008)). 5 For instance, consider dealers in a stock and dealers in stock index futures. The stock return is determined both by a systematic factor and an idiosyncratic factor whereas the stock index futures return is only driven by the systematic factor. Suppose that dealers in the stock index futures are well informed on the systematic factor. In this case, dealers in the stock can learn information about the systematic factor from the price of the stock index futures whereas dealers in the stock index futures have nothing to learn from the price of individual stocks. In this case learning is one sided. We 3

4 Second, when learning is two-sided, the model can feature multiple equilibria with differing levels of liquidity. The reason is as follows. Suppose that dealers in security X expect a drop in the liquidity of security Y. Then, dealers in security X expect the price of security Y to be noisier, which makes the market for security X less liquid. But as a consequence, the price of security X becomes less informative for dealers in security Y and the liquidity of security Y drops, which validates the expectation of dealers in security X. Hence, dealers expectations about the liquidity of the other security can be self-fulfilling. For this reason, there exist cases in which, for the same parameter values, the liquidity of securities X and Y can be either relatively high or relatively low. 6 A sudden switch from a high to a low liquidity equilibrium is an extreme form of co-variation in liquidity and fragility since it corresponds to a situation in which the liquidity of several related securities dries up without an apparent reason. Third, an increase in the fraction of pricewatchers in a security has an ambiguous impact on the liquidity of this security. On the one hand, this increase improves liquidity because pricewatchers require a smaller compensation for inventory risk (as they have more information). On the other hand, entry of new pricewatchers impairs liquidity because it exposes inattentive dealers (i.e., dealers without price information) to adverse selection. Indeed, pricewatchers bid relatively conservatively for the security when they receive bad signals and relatively aggressively when they receive good signals. As a result, inattentive dealers are more likely to end up with relatively large (small) holdings when the value of the security is low (large). In reaction to this winner s curse, inattentive dealers shade their bids, which reduces market liquidity. The net effect on liquidity is always positive when dealers risk bearing capacity (i.e., dealers risk tolerance divided by the variance of dealers aggregate dollar inventory) is low enough. Otherwise, an increase in the fraction of pricewatchers can impair market liquidity when the fraction of pricewatchers is small. Fourth, the exposure of inattentive dealers to adverse selection implies that liquidity spillovers can be negative. To see why, suppose that the liquidity of security Y improves. This improvement implies that the price of security Y conveys more precise information to pricewatchers in security X. Thus, the informational disadvantage of inattentive dealers increases and, as a result, the liquidity of security X may drop. For this to happen, we show that the fraction of pricewatchers must be small enough and dealers risk bearing capacity must be large. In a last step, we endogenize the fraction of pricewatchers by introducing a cost of attention to prices. There are several possible interpretations for this cost. It may simply reflect the fact that monitoring the price of other securities requires attention (it is time consuming) and human dealers have limited attention. 7 More importantly maybe, real-time data on prices are costly to acquire. Data vendors (Reuters, Bloomberg, etc... ) or trading platforms charge a fee for real time datafeed. 8 In particular, some market-makers can choose to pay a co-location 6 There also exist cases in which the equilibrium is unique, even if learning is two-sided. 7 Recent empirical papers (Corwin and Coughenour (2008), Boulatov et al. (2010) and Chakrabarty and Moulton (2009)) find that attention constraints for NYSE specialists have an effect on market liquidity. Thus, modelling dealer attention is important to understand liquidity. 8 Market participants often complain about these data fees.for instance, the fee charged by Nasdaq for the dissemination of corporate bond prices has been very controversial. For accounts of these debates, see, for in- 4

5 fee to trading platforms in order to obtain the right to place their computers close to platforms matching engines. In this way, they possess a split second advantage in accessing and reacting to changes in prices. Last, in the absence of real time price reporting (as for instance in some OTC markets), real time price information is available only to a few privileged dealers and very costly to collect for other participants. 9 When learning is one-sided, the value of price information declines with the fraction of pricewatchers. Thus, the equilibrium fraction of pricewatchers is unique and inversely related to the cost of price information. When dealers risk bearing capacity is low, a decrease in the cost of price information leads to an improvement in liquidity. Otherwise, liquidity is a U- shaped function of this cost. Indeed, for relatively high values of the cost of price information, a decrease in this cost triggers entry of a few pricewatchers, which is a source of adverse selection risk and impairs liquidity, as explained previously. In contrast, when learning is two-sided, the value of monitoring the price of, say, security X for dealers in security Y can increase with the fraction of pricewatchers in either security (for some parameter values). The reason is as follows. As explained previously, if dealers risk bearing capacity is low enough, an increase in the fraction of pricewatchers in security Y makes this security more liquid. This improvement in liquidity spreads to security X, which makes the price of this security more informative. Thus, information on the price of security X becomes more valuable for dealers in security Y. Furthermore, the value of information on the price of security X for dealers in security Y also increases in the fraction of pricewatchers in security X. Indeed, as the number of pricewatchers in security X increases, the price of this security becomes more informative, which strengthens its informational value for dealers in security Y. This finding is surprising since usually the value of financial information declines with the number of investors buying information (Grossman and Stiglitz (1980) or Admati and Pfleiderer (1986)). This principle does not necessarily apply to price information because the precision of price information increases in the number of dealers buying this information. One consequence is that dealers decisions to acquire price information on other securities are self-reinforcing both within and across markets. As a result, there can be multiple levels of attention in equilibrium for a fixed value of the cost of attention to prices. In particular, for identical parameter values, the markets for the two securities can appear well integrated (the fraction of pricewatchers is high) or segmented (the fraction of pricewatchers is low). As an illustration we construct an example in which, for a fixed correlation in the payoffs of both securities, the markets for securities X and Y are either fully integrated (all dealers are pricewatchers) or segmented (no dealer is a pricewatcher). For dealers in security X, monitoring the price of the other security does not have much value if there are no pricewatchers in security Y and vice versa. Thus, the situation in which the two markets are segmented is self-sustaining stance, Latest Market Data Dispute Over NYSE s Plan to Charge for Depth-of-Book Data Pits NSX Against Other U.S. Exchanges, Wall Street Technology, May 21, 2007; the letter to the SEC of the Securities Industry and Financial Markets Association (SIFMA) available at letters/ pdf, and TRACE Market Data Fees go to SEC, Securities Industry News, 6/3/ For instance, a bond dealer may be an employee of a trading firm also active in credit default swaps (CDS). In this way, the dealer may be privy of information on trades in CDSs written on the bond. 5

6 and can persist even if the cost of attention declines. The mechanism that leads to liquidity spillovers in our model generates predictions distinct from the mechanisms based on funding constraints or systematic shifts in risk aversion described in Brunnemeier and Pedersen (2008), Gromb and Vayanos (2002) or Kyle and Xiong (2001). In our model, funding restrictions or an increase in risk aversion for dealers in one asset class (e.g., stocks) can initially spark a drop in the liquidity of this class of assets. However, in contrast to other theories of co-variations in liquidity supply, our model predicts that this shock can spread to other asset classes (e.g., bonds) even if there is no tightening of funding constraints for dealers in other asset classes. The only requirement is that the prices of assets in the first class are used as a source of information to value assets in other classes. Furthermore, as explained previously, in our model liquidity spillovers can be negative while theories based on funding constraints imply positive liquidity spillovers. Isolating the role of cross-asset learning in liquidity spillovers is challenging empirically because this mechanism can operate simultaneously with other sources of systematic variations in liquidity. One way to address this difficulty consists in studying the effects of changes in trading technologies that affect dealers ability to learn from the prices of other assets. One strategy is to consider cases in which a security switches from an opaque trading system (e.g., an OTC market) to a more transparent trading system (a case in point is the implementation of post trade transparency in the U.S. bond market in 2002). In this case, dealers in related securities can more easily use the information conveyed by the price of the previously opaque security. This is similar to a decrease in the cost of price information in our model. Another approach is to study the effect of changes in co-location fees. Indeed, dealers who co-locate can be seen as pricewatchers in our model (they have very quick access to prices of other securities and can thereby make their strategies contingent on these prices). Hence, variations in colocation fees should also affect the fraction of pricewatchers. We develop predictions about the effects of such changes in trading technologies in the last part of the paper. Our model is related to models of contagion (King and Wadhwani (1990), Kodres and Pritsker (2002), or Pasquariello (2007)) and cross-asset price pressures (Andrade, Chang and Seasholes (2008), Bernhardt and Taub (2008), Pasquariello and Vega (2009), Boulatov, Hendershott and Livdan (2010). These models describe various mechanisms through which a shock on investors information or liquidity traders demand in one security can affect the prices of other securities. 10 None of these models however studies the role of cross-asset learning in the transmission of a liquidity shock (i.e., a change in the sensitivity of price to order imbalances) in one security to other securities, as we do here. Our paper is also linked to the literature on the value of financial information (e.g., Grossman and Stiglitz (1980), Admati and Pfleiderer (1986)). We contribute to this literature by studying the value of securities price information. As explained previously, we show that price information is special in the sense that its value can increase with the number of investors buying this information, an effect which does not arise in standard models of information acquisition. In this respect, our paper adds to the few 10 Most of these models build upon the multi-asset pricing models of Admati (1985) and Caballe and Krishnan (1994). 6

7 papers identifying conditions under which the value of financial information may increase with the number of informed investors (Barlevy and Veronesi (2000), Veldkamp (2006), Chamley (2007), and Ganguli and Yang (2009)). The rest of the paper is organized as follows. Section 2 describes the model. In Section 3, we consider the case in which the fraction of pricewatchers is fixed and we show how liquidity spillovers and multiple equilibria arise in this set-up. In Section 4, we study how the value of price information depends on the fraction of pricewatchers and we endogenize this fraction. Section 5 discusses testable implications of the model and Section 6 concludes. collected in the Appendix or the Internet Appendix. 2 The model Proofs are We consider two securities, denoted D and F. These securities pay-off at date 2 and their payoffs, v D and v F, are given by a factor model with two risk factors δ D and δ F, i.e., v D = δ D + d D δ F + η, (1) v F = d F δ D + δ F + ν. (2) The random variables δ D, δ F, η and ν are independent and have a normal distribution, with mean zero. The variance of η is denoted σ 2 η. We make additional parametric assumptions that simplify the exposition without affecting our conclusions. First, there is no idiosyncratic risk for security F (i.e., ν = 0). Second, the variance of the factors is normalized to one. Third, we assume that d F = 1 and d D [0, 1], so that the payoffs of the two securities are positively correlated. To simplify notations, we therefore denote d D by d. When d = 0, the payoff of security D does not depend on factor δ F. Thus, the price of security F cannot convey new information to dealers in security D. In this case, we say that learning is one-sided. Trades in securities D and F take place at date 1. In each market, there are two types of traders: (i) a continuum of risk-averse speculators and (ii) liquidity traders. The aggregate demand of liquidity traders in market j is u j N(0, σ 2 u j ). Liquidity traders demands in both markets are independent and are absorbed by speculators. Hence, in the rest of the paper, we refer to speculators as dealers and to u j as the size of the demand shock in market j. Dealers are specialized: they are active in only one security. In this way, we rule out co-movements in liquidity which arise simply because the same dealers are active in multiple securities. 11 Dealers specialized in security j have perfect information on factor δ j and no information on factor δ j. However, they can follow the price of the other security to obtain information on this factor. We denote by µ j the fraction of dealers specialized in security j who monitor the price of security j and we refer to µ j, as the level of attention to security j. 11 In reality, dealer firms are active in multiple securities. However, these firms delegate trade-related decisions to individuals who operate on specialized trading desks. Naik and Yadav (2003) show empirically that the decision-making of these trading desks is largely decentralized (e.g., dealers trading decisions within a firm are mainly driven by their own inventory exposure rather than the aggregate inventory exposure of the dealer firm to which they belong). Their results suggest that there is no direct centralized information sharing between dealers within these firms. 7

8 We refer to these dealers as being pricewatchers. Other dealers are called inattentive dealers. We use W to index the decisions made by pricewatchers and I to index the decisions made by inattentive dealers. The polar cases, in which there are either no pricewatchers in either market (µ D = µ F = 0) or all dealers are pricewatchers (µ D = µ F = 1) are called the no attention case and the full attention case, respectively. Table 1 summarizes the various possible cases that will be considered in the paper. Attention/Learning One-Sided: d = 0 Two-Sided: d > 0 No Attention µ D = µ F = 0 µ D = µ F = 0 Limited Attention µ j > 0 and µ j < 1 µ j > 0 and µ j < 1 Full Attention µ D = µ F = 1 µ D = µ F = 1 Table 1: Various Cases Each dealer in market j has a CARA utility function with risk tolerance γ j. Thus, if dealer i in market j holds x ij shares of the risky security, her expected utility is E [ U (π ij ) δ j, P k j ] [ { } ] = E exp γ 1 j π ij δj, Pj k, (3) where π ij = (v j p j )x ij and P k j is the price information available to a dealer with type k {W, I} operating in security j. As dealers submit price contingent demand functions, they all act as if they were observing the clearing price in their market. Thus, we have P W j = {p j, p j } and P I j = {p j }. We denote the demand function of a pricewatcher by x W j (δ j, p j, p j ) and that of an inattentive dealer by x I j(δ j, p j ). 12 In each period, the clearing price in security j, p j, is such that the demand for this security is equal to its supply, i.e., µ j x W j (δ j, p j, p j )di + (1 µ j )x I j(δ j, p j )di + u j = 0, for j {D, F }. (4) As in many other papers (e.g., Kyle (1985) or Vives (1995)), we will measure the level of illiquity in security j by the sensitivity of the clearing price to the demand shock (i.e., p j / u j ). In equilibrium, the aggregate inventory position of dealers in security j after trading at date 1 is u j and the total dollar value of this position at date 1 is u j v j. The risk associated with this position for dealers in security j can be measured by its variance conditional on information on risk factor δ j, i.e., σ 2 u j Var[v j δ j ]. Thus, the ratio of dealers risk tolerance to this variance (the total amount of risk taken by the dealers) is a measure of the risk bearing capacity of the 12 As pricewatchers observe the price in security j, they can make their trading strategy in security j contingent on this price. Alternatively, one can assume that pricewatchers do not observe directly the price of security j but are allowed to place limit orders (a demand function) in security j contingent on the price of other securities. Such indexed limit orders have been proposed by Black (1995) but are typically not offered by exchanges. See Cespa (2004) for an analysis of trading mechanisms that allow multi-price contingent orders. 8

9 market. We denote this ratio by R j : R j = γ 2 j σ 2 u j Var[v j δ j ]. (5) The higher is R j, the higher is the risk bearing capacity of the dealers in security j. As we shall see this ratio plays an important role for some of our findings. There are several ways to interpret the two securities in our model. For instance, as in King and Wadhwani (1990), securities D and F could be two stock market indexes for two different countries. Alternatively, they could represent a derivative and its underlying security. For instance, security D could be a credit default swap (CDS) and security F the stock of the firm on which the CDS is written. When d = f = 1 and σ 2 η = 0, the payoff of the two securities is identical, as in Chowdry and Nanda (1991). In this case, the two securities can be viewed as the stock of a cross-listed firm and its American Depository Receipt (ADR) in the U.S. for instance. Factor δ F can then be viewed as the component of the firm s cash-flows that comes from its sales in the U.S. In each of these cases, it is natural to assume that dealers have specialized information. For instance, dealers in country j will be well informed on local fundamental news but not on foreign fundamental news as in King and Wadhwani (1990) Attention and liquidity spillovers 3.1 Benchmark: No attention We first analyze the equilibrium in the no attention case (µ D = µ F = 0). For instance, the markets for securities D and F may be opaque so that dealers in each security can obtain information on the price of the other security only after some delay. Alternatively, the prices of each security are available in real time but accessing this information is so costly that no dealer chooses to be informed on the price of the other security (see Section 4). Lemma 1. (Benchmark) When µ F = µ D = 0, the equilibrium price in market j is: with B D0 = γ 1 D (σ2 η + d 2 ) and B F 0 = γ 1 F. p j = δ j + B j0 u j, (6) The sensitivity of the equilibrium price for security j to the aggregate demand shock in this market, the illiquidity of security j, is given by B j0 (we use index 0 to refer to the case in which µ F = µ D = 0). In the no attention case, the illiquidity of security D is determined by parameters σ 2 η, d, and γ D. We refer to these parameters as being the liquidity fundamentals of security D. Similarly, we refer to γ F as a liquidity fundamental of security F since it only affects the illiquidity of security F. Illiquidity increases with dealers risk aversion (γ j decreases) and uncertainty on the securities payoffs (σ 2 η increases). 13 In the case of the CDS market, dealers in CDS are often affiliated with lenders and therefore better informed on the likelihood of defaults (and size of associated losses) than dealers in the stock market (see Acharya and Johnson (2007)) 9

10 Importantly, in the benchmark case, there are no liquidity spillovers: a change in the illiquidity fundamental of one market does not affect the illiquidity of the other market. For instance, an increase in the risk tolerance of dealers in security D makes this security more liquid but it has no effect on the illiquidity of the other security. 14 In contrast, with limited or full attention, a change in the illiquidity fundamental of one security will affect the illiquidity of the other security, as shown in the next sections. 3.2 Liquidity spillovers with full attention In this section, we consider the case in which all dealers are pricewatchers, that is the full attention case (µ D = µ F = 1). The analysis is more complex than in the benchmark case as dealers in one security extract information about the factor that is unknown to them from the price of the other security. To solve this signal extraction problem, dealers must form beliefs on the relationship between clearing prices and risk factors. We will focus on equilibria in which these beliefs are correct, i.e., the rational expectations equilibria of the model. We first show that, in contrast to the benchmark case, the levels of illiquidity of both markets are interdependent and this interdependence leads to multiple equilibria (Section 3.2.1). We then provide an explanation for this finding and we show that that the interdependence in the illiquidity of securities D and F leads to liquidity spillovers: a shock to the illiquidity fundamental of one security propagates to the other security (Section 3.2.2). Finally, we show that when learning is two-sided, the total effect of a small shock on the illiquidity fundamental of one security can be much larger than the initial effect of such a shock (Section 3.2.3) Equilibria with full attention In our model, a linear rational expectations equilibrium is a set of prices {p j1} j {D,F } such that p j1 = R j1 δ j + B j1 u j + A j1 δ j + C j1 u j, (7) and p j1 clears the market of asset j for each realization of {u j, δ j, u j, δ j } when dealers anticipate that clearing prices satisfy equation (7) and choose their trading strategy to maximize their expected utility (given in equation (3)). We say that the equilibrium is non-fully revealing if pricewatchers in security j cannot infer perfectly the realization of risk factor δ j from observing the price of security j. The sensitivity of the price in market j to the demand shock in this market, i.e., the illiquidity of market j, is measured by B j1 in the full attention case. Index 1 is used to refer to the equilibrium when µ D = µ F = 1. Proposition 1. With full attention and σ 2 η > 0, there always exists a non-fully revealing linear rational expectations equilibrium. At any non-fully revealing equilibrium, B j1 > 0, R j1 = 1 and 14 In our model, a variation in risk tolerance of dealers in one security is just one way to vary the cost of liquidity provision for dealers in one asset class. In reality variations in this cost may be due to variations in risk tolerance, inventory limits or financing constraints for dealers in this asset class. The important point is that they do not directly affect dealers in other asset classes. 10

11 the coefficients, A j1 and C j1 can be expressed as functions of B j1 and B j1. Moreover B D1 = f 1 (B F 1 ; γ D, σ 2 η, d, σ 2 u F ) = σ2 η d 2 BF σ2 u F γ D γ D (1 + BF 2 1 σ2 u F ), (8) B F 1 = g 1 (B D1 ; γ F, σ 2 u D ) = B 2 D1 σ2 u D γ F (1 + B 2 D1 σ2 u D ). (9) Proposition 1 shows that the illiquidities of securities D and F are interdependent since B D1 is a function of B F 1 and vice versa. Moreover, all coefficients in the equilibrium price function can be expressed as functions of the illiquidity of securities D and F. Thus, the number of nonfully revealing linear rational expectations equilibria is equal to the number of pairs {B D1,B F 1 } solving the system of equations (8) and (9). In general, we cannot characterize these solutions analytically and therefore cannot solve for the equilibria in closed-form. However, we can find these solutions numerically. In Figure 2 we illustrate the determination of the equilibrium levels of illiquidity by plotting the functions f 1 ( ) and g 1 ( ) for specific values of the parameters. [Insert Figure 2 about here] The equilibria are the values of B D1 and B F 1 at which the curves representing the functions f 1 ( ) and g 1 ( ) intersect. In panel (a) we set γ j = d = 1, σ uj = 2, and σ η = 0.2. In this case, we obtain three equilibria: one with a low level of illiquidity, one with a medium level of illiquidity and one with a relatively high level of illiquidity. In panels (b) and (c), we pick values of σ η or d such that the correlation between the payoffs of securities D and F is smaller (σ η = 1 in panel (b) while d = 0.9 in panel (c)). In this case, we obtain a unique equilibrium. More generally, when d is low relative to σ 2 η, the model has a unique rational expectations equilibrium, as shown in the next corollary. Corollary 1. If 4d 2 < σ 2 η and µ D = µ F = 1 then there is a unique non-fully revealing rational expectations equilibrium. In particular, when learning is one sided (d = 0), there exists a unique non-fully revealing linear rational expectations equilibrium. Furthermore, in this case, we can characterize the equilibrium in closed-form (see Corollary 6 below). 15 The case in which σ 2 η = 0 requires a separate analysis. In this case, it is still true that if there exists a non-fully revealing equilibrium then B D1 and B F 1 solve the system of equations (8) and (9). However, in this case, the unique solution to this system of equations can be B D1 = B F 1 = 0 so that a non-fully revealing equilibrium does not exist. As an example, consider the case in which the two securities are identical: d = 1, σ 2 η = 0, γ F = γ D = γ, σ 2 u j = σ 2 u. We refer to this case as the symmetric case. 15 The condition given in Corollary 1 is sufficient to guarantee the existence of a unique rational expectations equilibrium when all dealers are pricewatchers, but it is not necessary. Numerical simulations show that there exist multiple equilibria when d is high relative to σ 2 η. Moreover it can be shown formally that the model has either one or three non-fully revealing rational expectations equilibria. 11

13 When d = 0, the price of security F does not convey information to dealers in security D (ρ 2 D1 = 0) since the payoff of security D does not depend on the risk factor known to dealers in security F. Using the expressions for B j1 given in Proposition 1, we obtain that B j1 = B j0 (1 ρ 2 j1). (17) This observation yields the following result. Corollary 2. The markets for securities D and F are less illiquid with full attention than with no attention, i.e., B j1 B j0. Moreover, with full attention, an increase in the informativeness of the price of security j for dealers in security j makes security j more liquid, i.e., B j1 ρ 2 j1 0. (18) The intuition for this result is straightforward. By watching the price of another security, dealers learn information. Hence, they face less uncertainty about the payoff of the security in which they are active. For this reason, with full attention, dealers require a smaller premium than with no attention to absorb a given demand shock (first part of the corollary) and this premium decreases with the informativeness of prices (last part of the corollary). Price movements in security j are driven both by news about factor δ j and demand shocks specific to this security. The contribution of demand shocks to price variations becomes relatively higher when security j becomes more illiquid. As a consequence the price of security j becomes less informative for dealers in other markets when security j becomes more illiquid. To see this, remember that the signal about factor δ j conveyed by the price of security j to dealers in security j is ω j = δ j + B j1 u j. Clearly, this signal is noisier when B j1 is higher, which yields the following result. Corollary 3. With full attention, an increase in the illiquidity of security j makes its price less informative for dealers in security j: ρ 2 j1 B j1 0. (19) Corollaries 2 and 3 explain why the illiquidity of security D and F are interdependent when dealers in the two securities learn from each other s prices. Indeed, the illiquidity of security j determines the informativeness of the price of this security for dealers in security j (Corollary 3) and as a result the illiquidity of security j (Corollary 2). This observation helps us to understand how multiple equilibria can arise when dealers learn from each other s prices. Consider dealers in security F. They do not directly observe the sensitivity of the price to demand shocks in security D, i.e., the illiquidity of security D. Hence, ultimately, the informativeness of the price of security D for dealers in security F depends on their belief regarding the illiquidity of security D. Similarly, the informativeness of the price of security F for dealers in security D depends on their belief regarding the illiquidity of security F. In sum, the illiquidity of security j depends on the beliefs of the dealers active in this 13

14 security about the illiquidity of security j, which itself depends on the beliefs of its dealers about the illiquidity of security j. This loop leads to multiplicity as, for the same values of the exogenous parameters, various systems of beliefs can be self-sustaining. 17 This circularity breaks down when dealers in security D do not use the information contained in the price of security F (either because µ D = 0 or because d = 0). In this case, the illiquidity of security D is uniquely pinned down by its fundamentals (γ D and σ 2 η) and, as a result, the beliefs of dealers in security F regarding the liquidity of security D are uniquely defined as well (since dealers expectations about the illiquidity of the other security must be correct in equilibrium). More generally, when d is low relative to σ 2 η, security D is not much exposed to factor δ F. Thus, the beliefs of dealers in security D about the liquidity of security F play a relatively minor role in the determination of the liquidity of security D and, for this reason, the equilibrium is unique, as shown in Corollary 1. The interdependence in the illiquidity of securities D and F has another implication. In contrast to the benchmark case, an exogenous change in the illiquidity of one market (due for instance to an increase in dealers risk tolerance in this market) affects the illiquidity of the other market. We call this effect a liquidity spillover. To see this point, consider the effect of an increase in the risk tolerance of dealers in security D. The immediate effect of this increase is to make security D more liquid as in the benchmark case. Hence, its price becomes more informative for dealers in security F (Corollary 3), which then becomes more liquid (Corollary 2) because inventory risk for dealers in security F is smaller when they are all better informed. Thus, the improvement in the liquidity of security D spreads to liquidity F, although security F experiences no change in its liquidity fundamentals. More formally, consider the system of equations (8) and (9). Other things equal, an increase in the risk tolerance of dealers in security D makes this security more liquid since f 1 / γ D < 0. In turn this improvement spreads to security F because g 1 / B D1 0. More generally, any exogenous change in the illiquidity of security D will spill over to security F because g 1 / B D1 0. Similarly, an exogenous change in the illiquidity of security F will spill over to security D when f 1 / B F 1 0. The direction (positive/negative) of these liquidity spillovers is determined by the signs of g 1 / B D1 and f 1 / B F 1. Corollary 4. With full attention, liquidity spillovers are always positive, i.e., f 1 / B F 1 0 and g 1 / B D1 > 0. Moreover when learning is one sided (d = 0), there is no spillover from security F to security D because the price of security F conveys no information to dealers in security D. In contrast, when learning is two-sided (d > 0), liquidity spillovers operate in both directions. Intuitively, positive liquidity spillovers generate positive co-movements in illiquidity acrosssecurities. In our model, illiquidity is not stochastic (it is a deterministic function of the parameters). However, we can create variations in illiquidity by picking randomly the exogenous 17 Ganguli and Yang (2009) consider a single security model of price formation similar to Grossman and Stiglitz (1980). They show that multiple non-fully revealing linear rational expectations equilibria arise when investors have private information both on the asset payoff and the aggregate supply of the security. The source of multiplicity here is different since dealers have no supply information in our model. 14

15 parameters of the model (e.g., the risk tolerance of dealers in security D) and compute the resulting covariance for illiquidity of securities F and D. Figure 5 in Section 3.3 provides an example that shows how positive liquidity spillovers result in positive covariation in liquidity Amplification: the illiquidity multiplier With two-sided learning, liquidity spillovers operate in both directions. As a consequence, the total effect of a small change in the illiquidity fundamentals of one security is higher than the direct effect of these changes. To see this consider the chain of effects that follows a small reduction, denoted by γ D < 0, in the risk tolerance of dealers in security D. The direct effect of this reduction is to increase the illiquidity of security D by ( f 1 / γ D ) γ D > 0. As a consequence, the price of this security becomes less informative. Hence, dealers in security F face more uncertainty and security F becomes less liquid as well, although its liquidity fundamental (γ F ) is unchanged. immediate increase in the illiquidity of security F is equal to ( g 1 / B D1 )( f 1 / γ D ) γ D > 0. When learning is two sided (d > 0), this increase in illiquidity for security F leads to an even larger increase in the illiquidity of security D, starting a new vicious loop (as the increase in illiquidity for security D leads to a further increase in illiquidity for security F etc,... ). As a result, the total effect of the initial decrease in the risk tolerance of dealers in security D is an order of magnitude larger than its direct effect on the illiquidity of both securities. The next corollary formalizes this discussion. Corollary 5. Let κ The 1 (1 ( g 1 / B D1 )( f 1 / B F 1 )), (20) and assume that d > 0. With full attention, the total effects of a change in the risk tolerance of dealers in security D is given by db D1 f 1 = κ < 0, dγ } {{ D γ } }{{} D Total Effect Direct Effect db F 1 = κ g 1 f 1 < 0. dγ } {{ D B } D1 γ } {{ D} Total Effect Direct Effect and there always exists at least one equilibrium in which κ > 1. Thus, the initial effects of a small change in the risk tolerance of dealers in security D are amplified by a factor κ. We call κ the illiquidity multiplier. This illiquidity multiplier can be relatively large when the illiquidity of each market is very sensitive to the illiquidity of the other market (( g 1 / B D1 )( f 1 / B F 1 ) is high). In this sense, cross-asset learning is a source of fragility for financial markets Allen and Gale (2004) define a financial market as being fragile if small shocks have disproportionately large effects. (Allen and Gale (2004), page 1015). 15

16 Figure 3 illustrates this point for specific values of the parameters (in all our numerical examples we choose the parameter values such that there is a unique rational expectations equilibrium, except otherwise stated). It shows the value of κ for various values of the idiosyncratic risk of security D (σ η ) and the resulting values for the direct and total effects of a change in this risk tolerance on the illiquidity of securities D and F, as a function of σ η. In this example, the total drop in illiquidity of each security after a decrease in risk tolerance for dealers in security D can be up to ten times bigger than the direct effect of this drop. Table 2 provides another perspective on the illiquidity multiplier by showing the elasticity, denoted E Bj1,γ D, of illiquidity in each security to the risk tolerance of dealers in security D, i.e., the percentage change in illiquidity in each security for a one percent increase in the risk tolerance of dealers in security D. The table also shows the elasticity that would be obtained (ÊB j1,γ D ) in the absence of the illiquidity multiplier (e.g., κ = 1 if µ D = 0). For instance, when γ D = 1.8, a drop of 1% in the risk tolerance of dealers in security D triggers an increase of 9% in the illiquidity of security D and 14.9% in the illiquidity of security F. This is much larger than what would be obtained in the absence of bi-directional spillovers (e.g., if µ D = 0) since in this case the illiquidity of securities D and F would increase by only 1% and 1.5% respectively. γ D κ B D1 B F 1 Elasticities E BD1,γ D Ê BD1,γ D E BF 1,γ D Ê BF 1,γ D Table 2: The table shows the impact of the illiquidity multiplier for different shocks to the risk aversion of dealers in market D. Other parameter values are d = 1, σ η =.62, σ uf =.1, σ ud = 1.6, γ D = 1.8, and γ F = 1/24. The corollary focuses on the effect of an increase in the risk tolerance of dealers in security D but the effects of a change in the other exogenous parameters of the model (γ F and σ 2 η) are also magnified for the same reasons. Last, we note that when the equilibrium is unique, it is necessarily such that κ > 1 (an implication of the last part of Corollary 5). When there are multiple equilibria, there is in general one equilibrium for which κ < 0. This equilibrium delivers unintuitive comparative statics. 19 For instance, in this equilibrium, a reduction in the risk tolerance of dealers in, say, security D increases the liquidity of both securities. Such an equilibrium may exist because, 19 It is possible to show that the model has three equilibria when it admits multiple equilibria. The equilibrium with κ < 0 is unstable whereas the two other equilibria (for which κ > 1) are stable. 16

17 as explained previously, the illiquidity of each security is in part determined by dealers beliefs about the illiquidity of the other market. These beliefs may be disconnected from the illiquidity fundamentals of each security and yet be self-fulfilling. 3.3 Limited attention, adverse selection, and negative liquidity spillovers We now turn our attention to the more general case in which 0 < µ D 1 and 0 < µ F 1. That is, we allow for limited attention by dealers in either security. In this case, the pricewatchers (dealers who monitor the price of the other security) have an informational advantage over inattentive dealers (dealers who do not monitor this price). This advantage is a source of adverse selection for inattentive dealers. This effect yields two new results: (a) liquidity spillovers can be negative and (b) an increase in the fraction of pricewatchers in one security can reduce the liquidity of this security when the fraction of pricewatchers is small. We now explain the intuition for these two results in more details. We proceed as follows. We first generalize Proposition 1 when attention is limited (Section 3.3.1). We then show that liquidity spillovers can be negative with limited attention and we provide a sufficient condition on the parameters for liquidity spillovers to be always positive (Section 3.3.2). Finally, we study the effect of a change in the fraction of pricewatchers in a security on the liquidity of this security (Section 3.3.3) Equilibria with limited attention As with full attention, a linear rational expectations equilibrium is a set of prices {p j} j {D,F } such that p j = R j δ j + B j u j + A j δ j + C j u j, (21) and p j clears the market of asset j for each realizations of {u j, δ j, u j, δ j } when dealers anticipate that clearing prices satisfy equation (21) and choose their trading strategies to maximize their expected utility. The next proposition generalizes Proposition 1 when 0 < µ D 1 and 0 < µ F 1. Proposition 2. Suppose σ 2 η > 0. With limited attention (i.e., 0 < µ D 1 and 0 < µ F 1), there always exists a non fully revealing linear rational expectations equilibrium. At any nonfully revealing equilibrium, B j > 0, R j = 1 and the coefficients A j and C j can be expressed as functions of B j and B j. Moreover B j = B j0 (1 ρ 2 j) γ 2 jµ j ρ 2 j + σ 2 u j Var[v j δ j ](1 ρ 2 j) γ 2 j µ2 j ρ2 j + σ2 u j Var[v j δ j ](1 ρ 2 j )(1 ρ2 j (1 µ j)), (22) where ρ 2 D d2 /((σ 2 η + d 2 )(1 + B 2 F σ2 u F )) and ρ 2 F 1/(1 + B2 D σ2 u D ). Proposition 2 generalizes Proposition 1 when attention is limited. As in the full attention case, it can be shown that (i) pricewatchers in security j extract a signal ω j = δ j + B j u j from the price of security j and that (ii) variable ρ 2 j is the informativeness of this signal. As 17

18 the pricewatchers trading strategy depends on the information they obtain from watching the price of security j (i.e., ω j ), the price of security j partially reveals pricewatchers private information. 20 Equation (21) implies that observing the price of security j and risk factor δ j is informationally equivalent to observing ˆω j A j δ j + B j u j + C j u j. Thus, in equilibrium, the information set of inattentive dealers, {δ j, p j }, is informationally equivalent to {δ j, ˆω j }. In what follows, we refer to ˆω j as inattentive dealers price signal. Using the expressions for A j and C j (given in the proof of Proposition 2), we obtain that ˆω j = A j ω j + B j u j. Hence, when B j > 0, inattentive dealers price signal is less precise than pricewatchers price signal, which means that inattentive dealers in security j are at an informational disadvantage compared to pricewatchers. This disadvantage creates an adverse selection problem for the inattentive dealers. Indeed, relative to inattentive dealers, pricewatchers will bid aggressively when the price of security j indicates that the realization of the risk factor δ j is high and conservatively when the price of security j indicates that the realization of the risk factor δ j is low. As a consequence, inattentive dealers in one security will tend to have relatively large holdings of the security when its value is low and relatively small holdings of the security when its value is large. This bias in inattentive dealers portfolio holdings is a source of adverse selection, which is absent when all dealers are pricewatchers. This new effect is key to understanding why liquidity spillovers may be negative in the limited attention case (see below). Substituting ρ 2 D and ρ2 F by their expressions in equation (22), we can express B j as a function of B j. Formally, we obtain: B D = f(b F ; µ D, γ D, σ 2 η, d, σ 2 u F ), (23) B F = g(b D ; µ F, γ F, σ 2 u D ), (24) where the expressions for the functions f( ) and g( ) are given in the Appendix (see equations (A.26) and (A.28)). The linear rational expectations equilibria are completely characterized by the solution(s) of this system of equations. As in the full attention case and for the same reason, there might be multiple equilibria and we cannot in general provide an analytical characterization of these equilibria. Of course, when µ D = µ F = 1, the solutions to the previous system of equations are those obtained in the full attention case since this case is nested in the limited attention case When are liquidity spillovers positive? As mentioned previously, liquidity spillovers from one security to the other can be negative when the fraction of pricewatchers in the latter security is relatively small. The intuition for negative spillovers is more easily seen when learning is one sided (d = 0) or when no dealers 20 Pricewatchers trading strategy (demand function) can be written as x W j (p j, ω j ) = a W j (E[v j δ j, p j ] p j ) = a W j (δ j p j ) + b W j ω j, where expressions for coefficients a W j and b W j are provided in the proof of Proposition 2. 18

19 in security D are pricewatchers (µ D = 0). Indeed, in these cases, the price of security F conveys no information to dealers in security D. Thus, the level of illiquidity in security D is as in the benchmark case (B D = B D0 ) and the level of illiquidity in security F is readily obtained by substituting this expression for B D in equation (22). Hence, there is a unique rational expectations equilibrium and we can characterize the equilibrium in closed form, which considerably simplifies the analysis. Remember that R F is a measure of dealers risk bearing capacity in security F (see equation (5)). We obtain the following result. Corollary 6. With one-sided learning (d = 0) or no pricewacthers in security D (µ D = 0), there is a unique linear rational expectations equilibrium where the levels of illiquidity of securities D and F are B D = B D0, (25) B F = B 2 D σ2 u D (B 2 D σ2 u F σ 2 u D + µ F γ 2 F ) γ F (µ 2 F γ2 F (1 + B2 D σ2 u D ) + B 2 D σ2 u D σ 2 u F (µ F + B 2 D σ2 u D )). (26) In this equilibrium, liquidity spillovers from security D to security F are positive for all values of µ F if R F 1. In contrast, if R F > 1, liquidity spillovers from security D to security F are negative when µ F < ˆµ F and positive when µ F ˆµ F, where ˆµ F is strictly smaller than one and defined in the proof of the corollary. When µ D = µ F = 1, the corollary describes the equilibrium obtained with full attention and one sided learning. In this case, as explained previously, liquidity spillovers from security D to security F are always positive. In contrast, when µ F is small enough and R F > 1, liquidity spillovers from security D to security F can be negative. To see why, consider a decrease in the risk tolerance of the dealers operating in security D (γ D decreases). This decrease makes security D less liquid and therefore less informative for pricewatchers in security F. Thus, uncertainty about the payoff of security F increases. As with full attention, this uncertainty effect increases the illiquidity of security F. However, with limited attention, there is a countervailing effect that we call the adverse selection effect. Indeed, as pricewatchers private information is less precise, their informational advantage is smaller. As a consequence, inattentive dealers are less exposed to adverse selection. This effect reduces the illiquidity of security F. Intuitively the reduction in uncertainty has a small effect on illiquidity when (i) few dealers receive price information (µ F < ˆµ F ) and (ii) when dealers risk bearing capacity is high (i.e., R F > 1) since in this case uncertainty is not a big driver of illiquidity. When these conditions are met, the adverse selection effect prevails over the uncertainty effect. As a result the increase in the illiquidity of security D reduces the illiquidity of security F. Otherwise, the uncertainty effect dominates and liquidity spillovers from security D to F are positive. We now consider the more general case in which learning is two-sided (d > 0). The next corollary shows that liquidity spillovers in this case are positive if the fraction of pricewatchers in securities D and F is high enough. 19

20 Corollary 7. Let { µ j = max 0, R } j 1, for j {D, F }. (27) R j If µ D [µ D, 1] and µ F [µ F, 1] then liquidity spillovers from security D to security F and vice versa are positive for all values of d. Thus, the model will feature positive liquidity spillovers if the level of attention is higher than µ j for j {D, F }. This threshold is always less than one and can be as low as zero if dealers risk bearing capacity is small enough in both markets, i.e., if R j 1 for j {D, F }. In contrast, when the fraction of pricewatchers in security j is less than µ j, liquidity spillovers from security j to security j can be negative for the reasons explained previously. As an example, suppose that the parameter values are as follows: σ uf = 0.1, σ ud = 1, γ F = 1, d = 1, µ D = µ F = 0.1, and σ η = 1. In this case, µ D = 0 while µ F = 0.9. Thus, liquidity spillovers from security F to security D are positive while liquidity spillovers from security D to security F can be negative since µ F < µ F (Corollary 7). For instance Figure 4 considers the effect of an increase in the risk tolerance of dealers in security D. This increase reduces the illiquidity of security D but it increases the illiquidity of security F because liquidity spillovers from security D to security F are negative in this case. [Insert Figure 4 about here] Our model predicts the existence of positive or negative liquidity spillovers between securities. Empirically, these spillovers should translate into positive or negative co-movement in liquidity. We illustrate this point with the following experiment. For a given value of µ F, we compute the illiquidity of securities F and D assuming that γ D is uniformly distributed in [0.5, 1] and setting σ uf = σ ud = 1/2, σ η = 2, γ F = 1/2. For these values of the parameters µ j = 0 and liquidity spillovers are therefore positive. We then compute the covariance between the resulting equilibrium values for B D and B F. Figure 5, Panel (a) and Panel (b) show this covariance as a function of µ F when d = 0 and d = 0.9, respectively (for µ D = 0.1 and µ D = 0.9). In both cases, the covariance between the illiquidity of securities D and F is positive because illiquidity spillovers are positive. In panel (c) we set σ uf = 0.1, d = 0.9 and µ D = 0.9 while other parameters are unchanged. In this case liquidity spillovers from security D to security F can be negative when µ F is smalle enough. As a result the covariance between the illiquidity of security D and the illiquidity of security F is negative for relative low values of µ F and positive otherwise. [Insert Figure 5 about here] Is attention good for market liquidity? We now study the relationship between the illiquidity of a security and the fraction of pricewatchers in this security. We already know that the illiquidity of security j is always smaller with full attention than with no attention (see Corollary 2). However, as shown below, for small 20

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Forgery, market liquidity, and demat trading: Evidence from the National Stock Exchange in India Madhav S. Aney and Sanjay Banerji October 30, 2015 Abstract We analyse the impact of the establishment of

Trading Costs and Taxes! Aswath Damodaran Aswath Damodaran! 1! The Components of Trading Costs! Brokerage Cost: This is the most explicit of the costs that any investor pays but it is usually the smallest

OPTIONS THEORY Introduction The Financial Manager must be knowledgeable about derivatives in order to manage the price risk inherent in financial transactions. Price risk refers to the possibility of loss

Answers to Concepts in Review 1. A portfolio is simply a collection of investments assembled to meet a common investment goal. An efficient portfolio is a portfolio offering the highest expected return

OPTION PRICING Options are contingency contracts that specify payoffs if stock prices reach specified levels. A call option is the right to buy a stock at a specified price, X, called the strike price.

The Liquidity Service of Benchmark Securities Kathy Yuan Ross School of Business, University of Michigan February 2005 Abstract We demonstrate that benchmark securities allow heterogeneously informed investors

Five Myths of Active Portfolio Management Most active managers are skilled. Jonathan B. Berk Proponents of efficient markets argue that it is impossible to beat the market consistently. In support of their

Discussion of Capital Injection, Monetary Policy, and Financial Accelerators Karl Walentin Sveriges Riksbank 1. Background This paper is part of the large literature that takes as its starting point the

ECON 4110: Sample Exam Name MULTIPLE CHOICE. Choose the one alternative that best completes the statement or answers the question. 1) Economists define risk as A) the difference between the return on common

Market Making with Asymmetric Information and Inventory Risk Hong Liu Yajun Wang October 15, 2015 Abstract Market makers in some financial markets often make offsetting trades and have significant market

Efficiently Inefficient Markets for Assets and Asset Management Nicolae Gârleanu and Lasse Heje Pedersen This version: February 24, 2015 Preliminary Do Not Distribute Abstract We consider a model where

Unraveling versus Unraveling: A Memo on Competitive Equilibriums and Trade in Insurance Markets Nathaniel Hendren January, 2014 Abstract Both Akerlof (1970) and Rothschild and Stiglitz (1976) show that

General Forex Glossary A ADR American Depository Receipt Arbitrage The simultaneous buying and selling of a security at two different prices in two different markets, with the aim of creating profits without

Market Linked Certificates of Deposit This material was prepared by Wells Fargo Securities, LLC, a registered brokerdealer and separate non-bank affiliate of Wells Fargo & Company. This material is not

July 31, 2015 SUMMARY PROSPECTUS SAAT Core Market Strategy Allocation Fund (SKTAX) Class A Before you invest, you may want to review the Fund s prospectus, which contains information about the Fund and